from __future__ import annotations
from typing import Dict, Union, Tuple, Any, List
import functools, hashlib
from enum import Enum, auto
from dataclasses import dataclass
from tinygrad.helpers import dedup, pretty_print, prod
from tinygrad.ops import ReduceOps, UnaryOps, BinaryOps, TernaryOps, UOp, UOps
from tinygrad.dtype import ImageDType, PtrDType, dtypes, DType, ConstType
from tinygrad.shape.symbolic import Variable, sint
from tinygrad.shape.shapetracker import ShapeTracker

# these ops are deleted after AST is UOp
class BufferOps(Enum): LOAD = auto(); CONST = auto(); STORE = auto() # noqa: E702
class MetaOps(Enum): KERNEL = auto();
Op = Union[UnaryOps, BinaryOps, ReduceOps, MetaOps, TernaryOps, BufferOps]

@dataclass(frozen=True)
class MemBuffer:
  idx: int
  dtype: DType
  st: ShapeTracker

@dataclass(frozen=True)
class ConstBuffer:
  val: ConstType | Variable
  dtype: DType
  st: ShapeTracker

@dataclass(frozen=True, eq=False)
class LazyOp:
  op: Op
  src: Tuple[LazyOp, ...] = ()
  arg: Any = None
  def cached_compare(self, x, context):
    if id(self) == id(x): return True
    if self.op != x.op or self.arg != x.arg or len(self.src) != len(x.src): return False
    if (key := (id(self), id(x))) in context: return context[key]
    ret = context[key] = all(a.cached_compare(b, context) for a,b in zip(self.src, x.src))
    return ret
  def __eq__(self, x): return self.cached_compare(x, context={})
  def __repr__(self:LazyOp): return pretty_print(self, lambda x: f'LazyOp({x.op}, arg={x.arg}, src=(%s))')
  @functools.cached_property
  def dtype(self) -> DType:
    if self.op in BufferOps: return self.arg.dtype
    if self.op is ReduceOps.WMMA: return self.arg[3]   # WMMA can change the type
    if self.op in [UnaryOps.CAST, UnaryOps.BITCAST]: return self.arg
    return dtypes.bool if self.op in {BinaryOps.CMPLT, BinaryOps.CMPNE} else self.src[-1].dtype
  @functools.cached_property
  def full_shape(self) -> Tuple[sint, ...]:
    if len(self.src) == 0 and self.op in BufferOps: return self.arg.st.shape
    return tuple(max(x) for x in zip(*[x.full_shape for x in self.src]))
  @functools.cached_property
  def key(self) -> bytes:
    return hashlib.sha256(functools.reduce(lambda x,y: x+y, [s.key for s in self.src], str((self.op, self.arg)).encode())).digest()
  @functools.cached_property
  def hash(self): return hash((self.op, self.src, self.arg))
  def __hash__(self): return self.hash
  @functools.cached_property
  def lazyops(self) -> List[LazyOp]: return dedup([self] + [item for x in self.src for item in x.lazyops])
  def vars(self) -> List[Variable]:
    extract_vars = [x.arg.st.vars() for x in self.lazyops if x.op in BufferOps]
    const_vars = [x.arg.val for x in self.lazyops if x.op is BufferOps.CONST and isinstance(x.arg.val, Variable)]
    return sorted(set.union(*extract_vars, set(const_vars)), key=lambda v: v.expr)
  def __add__(self, x:LazyOp): return LazyOp(BinaryOps.ADD, (self, x))
  def __sub__(self, x:LazyOp): return LazyOp(BinaryOps.ADD, (self, -x))
  def __mul__(self, x:LazyOp): return LazyOp(BinaryOps.MUL, (self, x))
  def ne(self, x:LazyOp): return LazyOp(BinaryOps.CMPNE, (self, x))
  def eq(self, x:LazyOp): return -self.ne(x)
  def __neg__(self): return LazyOp(UnaryOps.NEG, (self,))
  @staticmethod
  def const(val, dtype:DType, shape:Tuple[sint, ...]):
    return LazyOp(BufferOps.CONST, (), ConstBuffer(val, dtype, ShapeTracker.from_shape(()).reshape((1,)*len(shape)).expand(shape)))

# the living definition of LazyOps
def verify_lazyop(ast:LazyOp) -> Dict[LazyOp, ShapeTracker]:
  assert ast.op is MetaOps.KERNEL, "must be SINK"
  sts: Dict[LazyOp, ShapeTracker] = {}
  def assert_valid(op:LazyOp, st:ShapeTracker):
    if op in sts: return
    # restore globals from the two stage reduce
    if op.op is BufferOps.LOAD and op.arg.idx < 0:
      assert_valid(local_reduce:=op.src[0].src[0], op.arg.st)
      return sts.setdefault(op, sts[local_reduce])
    for x in op.src: assert_valid(x, st)
    # only reduceop is allowed to change shape, limited to turning n to 1
    if op.op in ReduceOps:
      axis = op.arg[-1] if op.op is ReduceOps.WMMA else op.arg
      assert isinstance(axis, tuple) and all(isinstance(i, int) for i in axis), f"reduceop must have axis {op.arg}"
      st = ShapeTracker.from_shape(sts[op.src[0]].reduce(axis))
    else:
      # movementops are pushed to the edges with LOAD
      # elementwise inherits shape
      st = op.arg.st if op.op in BufferOps else sts[op.src[0]]
      for x in op.src:
        if sts[x].shape != st.shape:
          if prod(sts[x].shape) == prod(st.shape): raise AssertionError(f"found implicit reshape {x.op} {op.op} {sts[x].shape} != {st.shape}")
          raise AssertionError(f"found implicit expand {x.op} {sts[x].shape} != {op.op} {st.shape} {prod(sts[x].shape)} != {prod(st.shape)}")
    sts[op] = st
  for i, out in enumerate(ast.src):
    assert out.arg.idx == i, f"unexpected output buffer idx {out.arg.idx} != {i}"
    assert out.op is BufferOps.STORE, f"kernels must have stores as the output, got {out.op}"
    assert out.arg.st.size == ast.src[-1].arg.st.size, f"outputs must have the same size, got {out.arg.st.size}"
    assert_valid(out, out.arg.st)
  shape_dims = [sorted(dedup(dims)) for dims in zip(*[x.shape for x in sts.values()])]
  assert all(len(x) == 1 or (len(x) == 2 and x[0] == 1) for x in shape_dims), f"shapes must have either 1 or n in each dimension, {shape_dims}"
  return sts

def to_uop(*a) -> UOp:
  assert isinstance(a[0], LazyOp), f"{a} must be a LazyOp ast"
  if a[0].op is BufferOps.STORE: ast = LazyOp(MetaOps.KERNEL, a)
  else:
    assert a[0].op is MetaOps.KERNEL
    ast = a[0]
  verify_lazyop(ast)
  @functools.lru_cache(None)
  def create_uop(lop:LazyOp) -> UOp:
    if lop.op in BufferOps:
      st_uop = lop.arg.st.to_uop()
      membuf_dtype: DType = lop.arg.dtype
      dtype = membuf_dtype.base if isinstance(membuf_dtype, ImageDType) else membuf_dtype
      if lop.op is BufferOps.CONST:
        return UOp(UOps.CONST, dtype, (st_uop,), lop.arg.val)
      buf = UOp(UOps.DEFINE_GLOBAL, membuf_dtype if isinstance(membuf_dtype, ImageDType) else PtrDType(membuf_dtype), (), lop.arg.idx)
      if lop.op is BufferOps.LOAD: return UOp(UOps.LOAD, dtype, (buf, st_uop))
      return UOp(UOps.STORE, None, (buf, st_uop, create_uop(lop.src[0])))
    src = tuple(create_uop(x) for x in lop.src)
    if lop.op is MetaOps.KERNEL: return UOp(UOps.SINK, None, src)
    if lop.op in ReduceOps: return UOp(UOps.REDUCE_AXIS, src[0].dtype, src, (lop.op, lop.arg))
    if lop.op is UnaryOps.CAST: return UOp(UOps.CAST, lop.arg.scalar(), src)
    if lop.op is UnaryOps.BITCAST: return UOp(UOps.BITCAST, lop.arg.scalar(), src)
    return src[0].alu(lop.op, *src[1:])
  ret = create_uop(ast)
  #with open("/tmp/ast", "w") as f: f.write(str(ret))
  return ret
